HAVANA: Hard Negative Sample-Aware Self-Supervised Contrastive Learning for Airborne Laser Scanning Point Cloud Semantic Segmentation

Author:

Zhang Yunsheng123ORCID,Yao Jianguo1,Zhang Ruixiang1ORCID,Wang Xuying1ORCID,Chen Siyang1,Fu Han4

Affiliation:

1. School of Geoscience and Info-Physics, Central South University, Changsha 410083, China

2. National Engineering Laboratory for High Speed Railway Construction, Changsha 410075, China

3. PowerChina Zhongnan Engineering Corporation Limited, Changsha 410027, China

4. Space Star Technology Co., Ltd., State Key Laboratory of Space Earth Integrated Information Technology, Beijing 100086, China

Abstract

Deep Neural Network (DNN)-based point cloud semantic segmentation has presented significant breakthrough using large-scale labeled aerial laser point cloud datasets. However, annotating such large-scaled point clouds is time-consuming. Self-Supervised Learning (SSL) is a promising approach to this problem by pre-training a DNN model utilizing unlabeled samples followed by a fine-tuned downstream task involving very limited labels. The traditional contrastive learning for point clouds selects the hardest negative samples by solely relying on the distance between the embedded features derived from the learning process, potentially evolving some negative samples from the same classes to reduce the contrastive learning effectiveness. This work proposes a hard-negative sample-aware self-supervised contrastive learning algorithm to pre-train the model for semantic segmentation. We designed a k-means clustering-based Absolute Positive And Negative samples (AbsPAN) strategy to filter the possible false-negative samples. Experiments on two typical ALS benchmark datasets demonstrate that the proposed method is more appealing than supervised training schemes without pre-training. Especially when the labels are severely inadequate (10% of the ISPRS training set), the results obtained by the proposed HAVANA method still exceed 94% of the supervised paradigm performance with full training set.

Funder

National Natural Science Foundation of China

Major S&T Program of Hunan Province

Science and Technology Research and Development Program Project of China railway group limited

PowerChina Zhongnan Engineering Corporation Limited

Publisher

MDPI AG

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